Practical Iterative Learning Control with Frequency Domain Design and Sampled Data Implementation Practical Iterative Learning Control with Frequency Domain Design and Sampled Data Implementation
Advances in Industrial Control

Practical Iterative Learning Control with Frequency Domain Design and Sampled Data Implementation

Danwei Wang and Others
    • 87,99 €
    • 87,99 €

Publisher Description

This book is on the iterative learning control (ILC) with focus on the design and implementation. We approach the ILC design based on the frequency domain analysis and address the ILC implementation based on the sampled data methods. This is the first book of ILC from frequency domain and sampled data methodologies. The frequency domain design methods offer ILC users insights to the convergence performance which is of practical benefits. This book presents a comprehensive framework with various methodologies to ensure the learnable bandwidth in the ILC system to be set with a balance between learning performance and learning stability. The sampled data implementation ensures effective execution of ILC in practical dynamic systems. The presented sampled data ILC methods also ensure the balance of performance and stability of learning process. Furthermore, the presented theories and methodologies are tested with an ILC controlled robotic system. The experimental results show that the machines can work in much higher accuracy than a feedback control alone can offer. With the proposed ILC algorithms, it is possible that machines can work to their hardware design limits set by sensors and actuators. The target audience for this book includes scientists, engineers and practitioners involved in any systems with repetitive operations.

GENRE
Computing & Internet
RELEASED
2014
19 June
LANGUAGE
EN
English
LENGTH
238
Pages
PUBLISHER
Springer Nature Singapore
SIZE
6.6
MB
Collaborative Fleet Maneuvering for Multiple Autonomous Vehicle Systems Collaborative Fleet Maneuvering for Multiple Autonomous Vehicle Systems
2022
Collaborative Perception, Localization and Mapping for Autonomous Systems Collaborative Perception, Localization and Mapping for Autonomous Systems
2020
Satellite Formation Flying Satellite Formation Flying
2016
Model-based Health Monitoring of Hybrid Systems Model-based Health Monitoring of Hybrid Systems
2013
Practical Control of Electric Machines Practical Control of Electric Machines
2020
Integral and Inverse Reinforcement Learning for Optimal Control Systems and Games Integral and Inverse Reinforcement Learning for Optimal Control Systems and Games
2024
Process Control for Pumps and Compressors Process Control for Pumps and Compressors
2024
Control of Autonomous Aerial Vehicles Control of Autonomous Aerial Vehicles
2023
Reinforcement Learning Reinforcement Learning
2023
Control of Variable-Geometry Vehicle Suspensions Control of Variable-Geometry Vehicle Suspensions
2023